» Articles » PMID: 17503186

Large-scale Optimization-based Classification Models in Medicine and Biology

Overview
Journal Ann Biomed Eng
Date 2007 May 16
PMID 17503186
Citations 20
Authors
Affiliations
Soon will be listed here.
Abstract

We present novel optimization-based classification models that are general purpose and suitable for developing predictive rules for large heterogeneous biological and medical data sets. Our predictive model simultaneously incorporates (1) the ability to classify any number of distinct groups; (2) the ability to incorporate heterogeneous types of attributes as input; (3) a high-dimensional data transformation that eliminates noise and errors in biological data; (4) the ability to incorporate constraints to limit the rate of misclassification, and a reserved-judgment region that provides a safeguard against over-training (which tends to lead to high misclassification rates from the resulting predictive rule); and (5) successive multi-stage classification capability to handle data points placed in the reserved-judgment region. To illustrate the power and flexibility of the classification model and solution engine, and its multi-group prediction capability, application of the predictive model to a broad class of biological and medical problems is described. Applications include: the differential diagnosis of the type of erythemato-squamous diseases; predicting presence/absence of heart disease; genomic analysis and prediction of aberrant CpG island meythlation in human cancer; discriminant analysis of motility and morphology data in human lung carcinoma; prediction of ultrasonic cell disruption for drug delivery; identification of tumor shape and volume in treatment of sarcoma; discriminant analysis of biomarkers for prediction of early atherosclerois; fingerprinting of native and angiogenic microvascular networks for early diagnosis of diabetes, aging, macular degeneracy and tumor metastasis; prediction of protein localization sites; and pattern recognition of satellite images in classification of soil types. In all these applications, the predictive model yields correct classification rates ranging from 80 to 100%. This provides motivation for pursuing its use as a medical diagnostic, monitoring and decision-making tool.

Citing Articles

Surface and Structural Studies of Age-Related Changes in Dental Enamel: An Animal Model.

Swietlicka I, Tomaszewska E, Muszynski S, Swietlicki M, Skrzypek T, Grudzinski W Materials (Basel). 2022; 15(11).

PMID: 35683290 PMC: 9182525. DOI: 10.3390/ma15113993.


Methods for predicting vaccine immunogenicity and reactogenicity.

Gonzalez-Dias P, Lee E, Sorgi S, de Lima D, Urbanski A, Silveira E Hum Vaccin Immunother. 2019; 16(2):269-276.

PMID: 31869262 PMC: 7062420. DOI: 10.1080/21645515.2019.1697110.


Decoding the complexities of human malaria through systems immunology.

Tran T, Crompton P Immunol Rev. 2019; 293(1):144-162.

PMID: 31680289 PMC: 6944763. DOI: 10.1111/imr.12817.


Investigating a Needle-Based Epidural Procedure in Obstetric Anesthesia.

Lee E, Tian H, Lee J, Wie X, Neeld Jr J, Smith K AMIA Annu Symp Proc. 2019; 2018:720-729.

PMID: 30815114 PMC: 6371386.


Combination of Classifiers Identifies Fungal-Specific Activation of Lysosome Genes in Human Monocytes.

Leonor Fernandes Saraiva J, Zubiria-Barrera C, Klassert T, Lautenbach M, Blaess M, Claus R Front Microbiol. 2017; 8:2366.

PMID: 29238336 PMC: 5712586. DOI: 10.3389/fmicb.2017.02366.